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Dynamics of Wealth Inequality in Simple Artificial Societies

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 نشر من قبل John Stevenson PhD
 تاريخ النشر 2021
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 تأليف John C. Stevenson




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A simple generative model of a foraging society generates significant wealth inequalities from identical agents on an equal opportunity landscape. These inequalities arise in both equilibrium and non-equilibrium regimes with some societies essentially never reaching equilibrium. Reproduction costs mitigate inequality beyond their affect on intrinsic growth rate. The highest levels of inequality are found during non-equilibrium regimes. Inequality in dynamic regimes is driven by factors different than those driving steady state inequality.

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58 - John C. Stevenson 2021
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